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A Flexible Monitoring Framework via Dynamic-Multilayer Graph Convolution Network

Xian-Jie Zhang, Xiao Ding, Haifeng Zhang, Donghui Pan, Kai Zhong

2023IEEE Transactions on Instrumentation and Measurement11 citationsDOI

Abstract

Due to the continuous technological innovation in industrial processes, many deep learning based methods have shown powerful capability in handing equipment status monitoring, but most of them ignore the temporal features and the dynamic changes of diverse spatial structure of the raw data. Meanwhile, these methods usually focus on handling a single downstream task, but rarely consider different tasks simultaneously. To solve these issues, this paper proposes a more flexible monitoring framework based on dynamic-multilayer graph convolution network, which can be adapted to different downstream tasks simultaneously by agile combinations of the modules according to the different industrial scenarios. First, the time series of fault samples are segmented and constructed into a feature matrix to extract the temporal information by the temporal module. At the same time, in order to fully characterize the dynamic change of different spatial structures among samples, the dynamic graph of each moment is expanded into a multilayer graph through various composition indexes. Then, the spatial information is extracted by the intra-layer and inter-layer convolution operations in the spatial module, and the fused features are applied to different downstream tasks. Finally, the experiments are performed in two different downstream tasks, namely three datasets for fault diagnosis and one dataset for remaining useful life prediction. The results of both diagnosis and prediction are better than those of the comparison algorithms, so the effectiveness and flexibility of the proposed framework are proved.

Topics & Concepts

Computer scienceData miningConvolution (computer science)GraphFlexibility (engineering)Agile software developmentArtificial intelligencePattern recognition (psychology)Theoretical computer scienceArtificial neural networkMathematicsStatisticsSoftware engineeringDigital Transformation in IndustryAdvanced Computing and AlgorithmsIndustrial Vision Systems and Defect Detection
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